/** Class NormalizeAttribute.java
 * 
 * @author AJB
 * @version 1
 * @since 14/4/09
 * 
 * Class normalizes attributes, basic version. Assumes no missing values. 
 * 
 * Normalise onto [0,1] if norm==NormType.INTERVAL, 
 * Normalise onto Normal(0,1) if norm==NormType.STD_NORMAL, 
 * 
 * 
 */

package weka.filters;

import weka.core.Instances;

public class NormalizeCase extends SimpleBatchFilter{
	public enum NormType {INTERVAL,STD,STD_NORMAL};
	
	NormType norm=NormType.STD_NORMAL;
        public void setNormType( NormType n){norm=n;}
/* 
 * 
 */
	protected Instances determineOutputFormat(Instances inputFormat){
	     Instances result = new Instances(inputFormat, 0);
	     return result;
	}
	public Instances process(Instances inst) throws Exception {
//Clone the istances 		
		  Instances result = new Instances(inst);
		  switch(norm){
		  case INTERVAL:	//Map onto [0,1]
			  intervalNorm(result);
			  break;
		  case STD:			//Subtract the mean of the series
			  standard(result);
			  break;
		  case STD_NORMAL:	//Transform to zero mean, unit variance
			  standardNorm(result);
			  break;
			  default:
				  
		  }
		  return result;
	}
/* Wont normalise the class value*/	
	public void intervalNorm(Instances r){
		double max,min;
		for(int i=0;i<r.numInstances();i++){
			max=Double.MIN_VALUE;
			min=Double.MAX_VALUE;
			for(int j=0;j<r.numAttributes();j++){
				if(j!=r.classIndex()&& !r.attribute(j).isNominal()){// Ignore all nominal atts{
					double x=r.instance(i).value(j);
					if(x>max)
						max=x;
					if(x<min)
						min=x;
				}
			}
			for(int j=0;j<r.numAttributes();j++){
				if(j!=r.classIndex()&& !r.attribute(j).isNominal()){// Ignore all nominal atts{
					double x=r.instance(i).value(j);
					r.instance(i).setValue(j,(x-min)/(max-min));
				}
			}
		}
	}
	public void standard(Instances r) throws Exception{
		double mean,sum,sumSq,stdev,x,y;
		int size=r.numAttributes();
		int classIndex=r.classIndex();
		if(classIndex>0)
			size--;
		for(int i=0;i<r.numInstances();i++)
		{
			sum=sumSq=mean=stdev=0;
			for(int j=0;j<r.numAttributes();j++){
			if(j!=classIndex&& !r.attribute(j).isNominal()){// Ignore all nominal atts{
					x=r.instance(i).value(j);
					sum+=x;
				}
				mean=sum/size;
			}
			for(int j=0;j<r.numAttributes();j++){
				if(j!=classIndex&& !r.attribute(j).isNominal()){// Ignore all nominal atts{
					x=r.instance(i).value(j);
					r.instance(i).setValue(j,(x-mean));
				}
			}
		}
	}	
	public static void standardNorm(double[] r) throws Exception{
            double sum=0,sumSq=0,mean=0,stdev=0;
                for(int i=0;i<r.length;i++){
                        sum+=r[i];
                        sumSq+=r[i]*r[i];
                }
                stdev=(sumSq-sum*sum/r.length)/r.length;
                mean=sum/r.length;
                if(stdev==0)
                    throw new Exception("Cannot normalise a series with zero variance! mean ="+mean+" sum = "+sum+" sum sq = "+sumSq);
                stdev=Math.sqrt(stdev);
                for(int i=0;i<r.length;i++)
                    r[i]=(r[i]-mean)/stdev;
        }
	public void standardNorm(Instances r) throws Exception{
		double mean,sum,sumSq,stdev,x;
		int size=r.numAttributes();
		int classIndex=r.classIndex();
		if(classIndex>=0)
			size--;
		for(int i=0;i<r.numInstances();i++)
		{
			sum=sumSq=mean=stdev=0;
			for(int j=0;j<r.numAttributes();j++){
                            if(j!=classIndex && !r.attribute(j).isNominal()){// Ignore all nominal atts
                                x=r.instance(i).value(j);
                                sum+=x;
                                sumSq+=x*x;
                            }
                        }
                        stdev=(sumSq-sum*sum/size)/size;
                        mean=sum/size;
                        stdev=Math.sqrt(stdev);
                        if(stdev==0)
                                throw new Exception("Cannot normalise a series with zero variance! Instance number ="+i+" mean ="+mean+" sum = "+sum+" sum sq = "+sumSq+" instance ="+r.instance(i));
                        for(int j=0;j<r.numAttributes();j++){
                            if(j!=classIndex&& !r.attribute(j).isNominal()){
                                    x=r.instance(i).value(j);
                                    r.instance(i).setValue(j,(x-mean)/(stdev));
                            }
                        }
		}
		
	}
	public String globalInfo() {
		// TODO Auto-generated method stub
		return null;
	}


	public String getRevision() {
		// TODO Auto-generated method stub
		return null;
	}

	static String[] fileNames={	//Number of train,test cases,length,classes
		"Beef", //30,30,470,5
		"Coffee", //28,28,286,2
		"OliveOil",
		"Earthquakes",
		"Ford_A",
		"Ford_B"
};
	static String path="C:\\Research\\Data\\Time Series Data\\Time Series Classification\\";
	
	public static void main(String[] args){

	}
	
	
}
